Fair Influence Maximization: A Welfare Optimization Approach
Aida Rahmattalabi, Shahin Jabbari, Himabindu Lakkaraju, Phebe Vayanos,, Max Izenberg, Ryan Brown, Eric Rice, Milind Tambe

TL;DR
This paper introduces a welfare-based framework for fair influence maximization in social networks, balancing fairness and efficiency, and providing an efficient, optimal solution with real-world applications.
Contribution
It proposes a novel social welfare theory-based approach for fair influence maximization, overcoming limitations of existing strict fairness constraints.
Findings
Framework effectively balances fairness and efficiency.
Optimization problem is monotone and submodular, enabling efficient solutions.
Experimental results demonstrate the framework's practical efficacy.
Abstract
Several behavioral, social, and public health interventions, such as suicide/HIV prevention or community preparedness against natural disasters, leverage social network information to maximize outreach. Algorithmic influence maximization techniques have been proposed to aid with the choice of "peer leaders" or "influencers" in such interventions. Yet, traditional algorithms for influence maximization have not been designed with these interventions in mind. As a result, they may disproportionately exclude minority communities from the benefits of the intervention. This has motivated research on fair influence maximization. Existing techniques come with two major drawbacks. First, they require committing to a single fairness measure. Second, these measures are typically imposed as strict constraints leading to undesirable properties such as wastage of resources. To address these…
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Taxonomy
TopicsAdvanced Causal Inference Techniques
